Trace Data Analytics with Knowledge Distillation : DM: Big Data Management and Mining

Janghwan Lee, Wei Xiong, Wonhyouk Jang
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引用次数: 2

Abstract

In this paper, we propose the “trace data analytics” for classifying fault conditions from multivariate time series sensor signals using well-known deep CNN models. In our approach, multiple sensor signals are converted into two dimensional representations using the proposed conversion methods to optimize the classification performance. Many studies on the prediction of manufacturing results using sensor signals have been conducted in the field of fault detection and classification for display and semiconductor manufacturing processes. It is challenging to apply machine learning to real-life manufacturing problems due to practical limitations, class imbalance and data insufficiency, which also make it difficult to produce a generalized model. To overcome these challenges, we propose using omni-supervised learning but with a new approach to knowledge distillation that ensembles predictions from multiple instantiations of a CNN model of synthetically generated data samples from a deep generative model. Our experiment results show that the fault classification accuracy improves substantially by applying trace data analytics to manufacturing data from display fabrication lines. The results also show that the quality of trained CNN models using the proposed knowledge distillation is maintained steadily and stably.
基于知识蒸馏的跟踪数据分析:DM:大数据管理和挖掘
在本文中,我们提出了“跟踪数据分析”,利用众所周知的深度CNN模型从多变量时间序列传感器信号中对故障条件进行分类。在我们的方法中,使用所提出的转换方法将多个传感器信号转换为二维表示,以优化分类性能。在显示和半导体制造过程的故障检测和分类领域,已经开展了许多利用传感器信号预测制造结果的研究。将机器学习应用于现实生活中的制造问题是具有挑战性的,因为实际的限制,类的不平衡和数据的不足,这也使得很难产生一个广义的模型。为了克服这些挑战,我们建议使用全监督学习,同时采用一种新的知识蒸馏方法,该方法将来自深度生成模型的综合生成数据样本的CNN模型的多个实例的预测集成在一起。实验结果表明,将跟踪数据分析应用于显示生产线的制造数据,故障分类精度得到了显著提高。结果还表明,使用所提出的知识蒸馏训练的CNN模型的质量保持稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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